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Electromagnetic Signal Feature Fusion and Recognition based on Multi-Modal Deep Learning

机译:基于多模态深度学习的电磁信号特征融合与识别

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摘要

Signal modulation recognition is the core of cognitive radio and spectrum sensing. With the rapid development and application of deep learning technology in recent years, multi-modal deep learning has become the mainstream of multi-modal machine learning. However, its usage in communication systems has not been well explored. This paper proposes a signal contour stellar images domain recognition method based on deep learning (DL) to achieve the problem of low recognition accuracy under low signal-to-noise ratio. A signal I/Q waveform domain recognition method based on deep complex-valued neural network is proposed to extract the amplitude and phase features of signals to achieve high-precision and high-robustness recognition of multiple signals. A multi-modal deep learning method is proposed to fuse image features, amplitudes, and phase features extracted by complex-valued neural networks to further improve the recognition accuracy and robustness of signals. Finally, the simulation results show the superiority of the scheme and prove that the scheme utilizes the complementarity between signal multi-modalities, removes the redundancy between the modes, and realizes the deep intelligent extraction of signal features, which can lead to a better signal recognition effect.
机译:信号调制识别是认知无线电和光谱感测的核心。随着近年来深度学习技术的快速发展和应用,多模态深入学习已成为多模态机学习的主流。但是,它在通信系统中的使用情况尚未得到很好的探索。本文提出了一种基于深度学习(DL)的信号轮廓恒星图像域识别方法,以在低信噪比下实现低识别精度的问题。提出了一种基于深复值神经网络的信号I / Q波形域识别方法,提取信号的幅度和相位特征,以实现多个信号的高精度和高稳健性识别。提出了一种多模态深度学习方法,用于熔断由复值神经网络提取的图像特征,幅度和相位特征,以进一步提高信号的识别精度和鲁棒性。最后,仿真结果表明,该方案的优势并证明该方案利用信号多模态之间的互补性,消除模式之间的冗余,并实现了信号特征的深度智能提取,这可能导致更好的信号识别影响。

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